Questions tagged [gpflow]

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Error in prediction formula for GPflow SGPR?

I believe there is an error in the next-to-last equation in the documentation page at https://gpflow.readthedocs.io/en/master/notebooks/theory/SGPR_notes.html, which makes the last prediction equation ...
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15 views

How to implement a Heteroscedastic GP with StudentT distribution?

I tried to implement a Heteroscedastic GP with a Student T distribution. My aim was to fit the scale as well as the degree of freedom parameter. I read https://github.com/GPflow/GPflow/discussions/...
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1answer
19 views

Handling diffferent number of observations at timepoints

I am working with a data set that contains at different number of observations at different time points. For example, at x(0), 2 observations are available while at x(1) 4 observations are available. ...
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1answer
32 views

How to get the noise variance from the Stochastic Variational Gaussian Process (SVGP) in GPFlow

As the question states I'm wondering how to get the noise variance (not the signal variance) from the SVGP model in GPFlow. To clarify, by noise variance I mean the parameter of the Gaussian ...
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44 views

GPFlow model gives bad predictions on test set

Good day! I was using GPFlow regression to model function on a sphere (spherical distance between point and North Pole). Here is my code: model = gpflow.models.GPR(data=(nodes_train, fs_train), kernel=...
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1answer
33 views

How can I use minibatches with a non-variational GPR in gpflow?

I have tried to adapt the instructions in this documentation to use minibatches for a training a GPR model, but nothing I have tried works. I cannot supply the batch iterator to the ...
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1answer
40 views

Is there code or research about Heteroscedastic Gaussian Process in GPflow?

I'm now studying on GP models with heteroscedastic noise, and I want to know if there are codes or notes in GPflow community so I can learn about them. Thanks very much!
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1answer
48 views

Is there a way to retrieve the weights from a GPflow GPR model?

Is there a way to retrieve the weights from a GPflow GPR model? I do not necessarily need the explicit weights. However, I have two issues that may be solved using the weights: I would like to ...
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1answer
66 views

How can I compile batched training of a gpflow GPR into a tf.function?

I need to train a GPR model in multiple batches per epoch using a custom loss function. I would like to do this using GPflow and I would like to compile my training using tf.function to increase the ...
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86 views

How to incorporate known data variance in prediction?

For my model, I am using a heteroskedastic likelihood based on the Heteroskedastic Likelihood and Multi-Latent GP notebook which uses two latent GPs. From my application, I already know the output ...
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1answer
57 views

GPFlow Multiclass classification with vector inputs causes value error on shape mismatch

I am trying to follow the Multiclass classification in GPFlow (using v2.1.3) as described here: https://gpflow.readthedocs.io/en/master/notebooks/advanced/multiclass_classification.html The difference ...
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44 views

Error while using VGP instead of SVGP in Heteroskedastic gpflow example (multilatent GP)

I am trying to understand why I am getting a ValueError when I try to replace SVGP with VGP in the heteroscedastic regression example (https://gpflow.readthedocs.io/en/develop/notebooks/advanced/...
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21 views

How to use ParamList

I found this interesting package which implements non-stationary kernels for Gaussian Process Regresion however, it was built using an older version of gpflow. For example: It uses from gpflow import ...
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31 views

Coregionalized with input training data with known errors (i.e. x, y, ey)

I was able to successfully run a model like the one described here. I have four sets of data with errors (astronomical data, by the way, e.g. time, magnitude, and magnitude errors in four different ...
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1answer
57 views

Use of priors on hyper-parameters with SVGP model

I wanted to use priors on hyper-parameters as in (https://gpflow.readthedocs.io/en/develop/notebooks/advanced/mcmc.html) but with an SVGP model. Following the steps of example 1, I got an error when I ...
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0answers
43 views

How to create a weighted composite covariance function using GPML toolbox in MATLAB?

I'm trying to create a composite covariance function to model my data. Specifically I want to create a kernel which is weighted between @covSEard & @covRQard. For ex: I want to give a 30% weight ...
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49 views

Adding probabilistic random effects to gaussian processes with GPFlow

Random effects are commonly used in statistics to include the effects of experimental units, such as y = f(x) + Zη + ε, where f(x) is the function modelling fixed effects, Z is the model matrix of the ...
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1answer
58 views

gpflow classification implementation

I want to implement a binary classification model using Gaussian process. According to the official documentation, I had the code as below. The X has 2048 features and Y is either 0 or 1. After ...
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0answers
29 views

Is there a way to use RandomizedSearchCV or GridSearchCV from scikit-learn with GPflow 2 models?

I'm using GPflow to do Gaussian Process Regression using a dataset with multidimensional input/output (input_dim = 8, output_dim = 23). Right now I'm defining my kernels and initial parameters ...
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1answer
86 views

GPflow multi-output change-point

I would like to construct a multi-output GP, whereby the correlation structure between outputs contains a changepoint. The change should only occur in the correlation structure of the Coregion kernel, ...
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2answers
78 views

How to write a custom kernel in GPflow for the covariance matrix RBF plus noise only on the main block diagonal?

The required covariance matrix is where t is 1D time and k={0, 1} A sample from the kernel should look like: with the orange sequence corresponding to k=0, and the blue one to k=1.
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95 views

2D implementaion in gpflow example and obtaining MAE, RMSE errors

I am very new to GPy and gpflow, and have been learning to implement the multiple-output multiple input functions using the usual examples on their webpages. I have used a Goldstein function for this ...
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1answer
64 views

GPflow changepoint

How to find changepoint locations using gpflow.kernels.changepoint. Post fitting a GPR model with this kernel, how to trace it back to actual changepoints in data? Code snippet/pseudo code or any sort ...
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2answers
154 views

GPflow2: Multi output kernels (MOK) with partially shared kernels

I have a question regarding multi output kernels in gpflow 2. For the application I am working on, I want to create a independent multi output kernel that shares kernels across some output dimensions ...
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1answer
79 views

Questions about Bayesian GP-LVM implementation details

I want to understand how the Bayesian GPLVM implementation works in GPflow, but I am struggling with a few lines of the code. I would greatly appreciate any help me with the following questions: I ...
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1answer
44 views

How can I transfer parameters from one gpflow model to another to gain similar results?

Suppose I have a trained model m = gpflow.models.SVGP( likelihood=likelihood, kernel=kernel, inducing_variable=Z, num_data = len(X_train) ) is it possible to transfer its parameters to another ...
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1answer
60 views

GPflow 2 custom kernel construction: fine upon construction, but kernel of size None in optimization

I'm creating some GPflow models in which I need the observations pre and post of a threshold x0 to be independent a priori. I could achieve this with just GP models, or with a ChangePoints kernel with ...
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1answer
23 views

How do I profile my code in GPflow2? What happened to dump_timeline and gpflowrc?

I am trying profiling my code in GPflow 2 as I need to know which part of my code consumes the most CPU time. In GPflow 1 there was a gpflowrc file where you could set dump_timeline = True but this ...
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1answer
244 views

Why is GPflow's Scipy optimizer incompatible with decorating the optimization step with tf.function?

I am supplying different minibatches to optimize a GPflow model (SVGP). If I decorate the optimization_step with tf.function I get the following error: NotImplementedError: Cannot convert a symbolic ...
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0answers
114 views

AttributeError: 'Tensor' object has no attribute 'ndim' in GPflow

I run the following code to produce a graph where the mean function, the 95% confidence interval and 10 samples from the posterior are plotted as per https://gpflow.readthedocs.io/en/stable/notebooks/...
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113 views

GP regression using Poisson likelihood

I am trying to implement GP regression using Poisson likelihood. I followed the example in GPy by doing poisson_likelihood = GPy.likelihoods.Poisson() laplace_inf = GPy.inference....
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1answer
123 views

Is there a way to define a 'heterogeneous' kernel design to incorporate linear operators into the regression for GPflow (or GPytorch/GPy/...)?

I'm trying to perform a GP regression with linear operators as described in for example this paper by Särkkä: https://users.aalto.fi/~ssarkka/pub/spde.pdf In this example we can see from equation (8) ...
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1answer
90 views

gpflow: Non-Independent Multioutput Kernel

I'm trying to implement my own MultioutputKernel (MOK) in gpflow, however I'm stuck at the Multiple Dispatch for the (Kernel, Inducing Variable) combinations. According to the docs, the fallback ...
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1answer
67 views

Can I specify different kernels for different data types in GPflow?

For my model there are two different types of data. Let us say data of type X1 and data of type X2. Is it possible to implement different kernels for both data types? So starting from data of type X1, ...
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1answer
245 views

Multi-class classification with softmax likelihood

The GPflow docs provide an example for multi-class classification with the robust-max function. I am trying to train a multi-class classifier with the softmax likelihood instead, which is also ...
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1answer
187 views

Reshape of Inducing Variables - GPflow

I have an SGPR model: import numpy as np import gpflow X, Y = np.random.randn(50, 2), np.random.randn(50, 1) Z1 = np.random.randn(13, 2) k = gpflow.kernels.SquaredExponential() m = gpflow.models....
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1answer
150 views

How to fix some dimensions of a kernel lengthscale in gpflow?

I have a 2d kernel, k = gpflow.kernels.RBF(lengthscales=[24*5,1e-5]) m = gpflow.models.GPR(data=(X,Y), kernel=k, mean_function=None) and I want to fix the lengthscale in the 2nd dimension, and just ...
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1answer
227 views

Partial derivatives of Gaussian Process wrt features

Given a Gaussian Process Model with multidimensional features and scalar observations, how do I compute derivatives of the output wrt to each input, in GPyTorch or GPFlow (or scikit-learn)?
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1answer
130 views

GPFlow multiple independent realizations of same GP, irregular sampling times/lengths

In GPflow I have multiple time series and the sampling times are not aligned across time series, and the time series may have different length (longitudinal data). I assume that they are independent ...
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1answer
243 views

How to build a Gaussian Process regression model for observations that are constrained to be positive

I'm currently trying to train a GP regression model in GPflow which will predict precipitation values given some meteorological inputs. I'm using a Linear+RBF+WhiteNoise kernel, which seems ...
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2answers
257 views

Custom Mean Function Construction for GPFlow Regression

I am trying to pass a custom mean function into GPflow 2.0. I have some (x,y,z) data with several observations for each x,y point. I wanted to pass the average z value for each (x,y) pair as the ...
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1answer
141 views

GPflow - Updating Model with new Data

I have trained a model in GPflow and ultimately I would like to take this posterior distribution and use it as the prior in a new instance. I reviewed the docs and couldn't see anything. I did see ...
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1answer
138 views

How to make prediction with GPflow - running GPC with a simple data input? Failed to run the code from example notebook on different data

I tried to run the code from the notebook on self generated data, to prove if the model will do any classification. https://gpflow.readthedocs.io/en/master/notebooks/basics/classification.html So I ...
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2answers
91 views

Initial guesses for hyperparameters in GPflow

I've also asked this on the GPflow GitHub I found the initial guesses for hyperparameters by using m.likelihood.variance.assign(0.01) and m.kernel.lengthscales.assign(0.3) affects significantly to the ...
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1answer
196 views

Automatic relevance determination with prior distribution for lengthscale

I'm trying to use GPflow to fit a GP. I would like to use automatic relevance determination and a prior for the lengthscales. I know how to do both separately: kernel = gpflow.kernels....
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1answer
61 views

Regression with variable known uncertainty with GPFlow

I am trying to model some 1D data where each data point has a different error bar. In the GPFlow documentation I find an example of how to do this here (known noise variances demo) However, the demo ...
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0answers
117 views

How to sample from multiple chains with GPflow?

I have recently started using gpflow to build a GP model. I used a Hamiltonian Monte Carlo to sample the posterior with a single chain. My goal is to run multiple chains and perform convergence ...
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2answers
186 views

Strange `pickle`/`gpflow.utilities.freeze` behaviour with gpflow models

I have been trying to (crudely) train and save a gpflow SVGP model on a toy dataset largely following this notebook example Upon saving the model using pickle (I appreciate this is not recommended ...
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1answer
343 views

gpflow matrix inversion error when doing regression

I am trying to adapt the gpflow GP regression example (https://gpflow.readthedocs.io/en/develop/notebooks/basics/regression.html) to my own data. I have 100 model runs, each with 10 parameters in an ...
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1answer
123 views

Accuracy is not increasing, though loss is decreasing

I am feeding cnn features into gpflow model. I am writing the chunks of code from my program here. I am using tape.gradient with Adam optimizer (scheduled lr). My accuracy gets stuck on 47% and ...